R-MStorm: A Resilient Mobile Stream Processing System for Dynamic Edge Networks

M. Chao, R. Stoleru
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引用次数: 11

Abstract

Mobile Stream Processing (MSP) provides a promising approach to run computation-intensive stream applications, e.g., video face recognition, on a cluster of mobile devices at the edge. However, the performance of MSP is severely restricted by the fluctuating bandwidth and intermittent connectivity of the wireless networks connecting those devices. Therefore, to achieve a good MSP performance, implementing a resilient MSP system that adapts to dynamic edge networks is essential.In this paper, we present R-MStorm, a resilient MSP system deployed at the edge. R-MStorm improves the system survivability by (1) assigning tasks to mobile devices with higher availability to improve the availability of whole system; (2) assigning tasks of the same application components to different devices to increase the diversity of physical stream paths. Besides, to efficiently divide the output of upstream tasks to downstream tasks, R-MStorm adopts adaptive stream grouping, which considers both the transmission rate to and processing rate at each downstream task. Moreover, to alleviate congestion caused by network disconnection and stream redirection, adaptive stream selection is applied to skip some data to achieve a short response time.We conduct extensive experiments on R-MStorm by executing a video face recognition App under different network conditions. The experimental results show that, compared with baseline approaches, R-MStorm achieves up to 1.5x higher throughput, 75% lower response time, at a cost of 3.3% accuracy loss.
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R-MStorm:动态边缘网络的弹性移动流处理系统
移动流处理(MSP)提供了一种有前途的方法来运行计算密集型流应用程序,例如,视频人脸识别,在边缘的移动设备集群上。然而,MSP的性能受到连接这些设备的无线网络的波动带宽和间歇性连接的严重限制。因此,为了获得良好的MSP性能,实现一个适应动态边缘网络的弹性MSP系统是必不可少的。在本文中,我们提出了R-MStorm,一种部署在边缘的弹性MSP系统。R-MStorm通过以下方式提高系统的生存能力:(1)将任务分配给可用性更高的移动设备,提高整个系统的可用性;(2)将同一应用组件的任务分配给不同的设备,增加物理流路径的多样性。此外,为了有效地将上游任务的输出分配给下游任务,R-MStorm采用了自适应流分组,同时考虑了每个下游任务的传输速率和处理速率。此外,为了减轻网络断开和流重定向造成的拥塞,采用自适应流选择,跳过部分数据,以达到较短的响应时间。我们在R-MStorm上进行了大量的实验,在不同的网络条件下执行了一个视频人脸识别应用程序。实验结果表明,与基线方法相比,R-MStorm的吞吐量提高了1.5倍,响应时间降低了75%,精度损失为3.3%。
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